基于森林场景的高维数据多聚类投影分析

L. Shalin, A. Bharathi, T. Prasanth
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引用次数: 0

摘要

聚类算法经常用于扩展距离度量或相似度评估,以实现数据与数据库的分离。划分的数据点更加相似,并且它们在高维数据空间中具有明显的聚类性。然后,用不同的比例集对聚类数据点进行投影。高维数据聚类是一个比较成熟的研究领域。高维数据广泛应用于森林场景、机器学习、信号与图像处理、计算机视觉、模式识别、生物信息学等众多领域。让我们考虑在不同的树结构中聚类关于树的信息的森林场景。在森林信息聚类的基础上,他们结合了不同领域的能力和设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Multi Cluster Projection on High Dimensional Data Based on Forest Scenario
Clustering algorithm is frequently used for extending a distance metric or a similarity evaluation for the separation of data from database. The divided data points are more similar and they are categorized significantly to cluster in high dimensional data spaces. Then, clustered data points are projected with different diverse set of proportions. Clustering high dimensional data is a proficient research field. High-dimensional data are wide-ranging in numerous areas of forest scenario, machine learning, signal and image processing, computer vision, pattern recognition, bioinformatics and so on. Let us consider the forest scenario for clustering the information about the trees among dissimilar tree structure. Based on the clustering of forest information, they combine diverse areas of capability and equipment.
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